Lightning-AI/pytorch-lightning

Use :emphasize-lines: in sphinx docs to highlight code.

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#12 119 ouverte le 25 févr. 2022

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Description

📚 Documentation

For typos and doc fixes, please go ahead and:

.. code-block:: python
   :emphasize-lines: 3,5

   def some_function():
       interesting = False
       print 'This line is highlighted.'
       print 'This one is not...'
       print '...but this one is.'

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